2023 IEEE/ACIS 21st International Conference on Software Engineering Research, Management and Applications (SERA) 2023
DOI: 10.1109/sera57763.2023.10197800
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TIPICAL - Type Inference for Python In Critical Accuracy Level

Jonathan Elkobi,
Bernd Gruner,
Tim Sonnekalb
et al.

Abstract: Type inference methods based on deep learning are becoming increasingly popular as they aim to compensate for the drawbacks of static and dynamic analysis approaches, such as high uncertainty. However, their practical application is still debatable due to several intrinsic issues such as code from different software domains will involve data types that are unknown to the type inference system.In order to overcome these problems and gain high-confidence predictions, we thus present TIPICAL, a method that combin… Show more

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